Department of Biomedical Engineering, University of Michigan, Ann Arbor, United States.
Department of Electrical Engineering and Computer Science, University of Michigan, Ann Arbor, United States.
Elife. 2023 Jun 7;12:e82598. doi: 10.7554/eLife.82598.
A key factor in the clinical translation of brain-machine interfaces (BMIs) for restoring hand motor function will be their robustness to changes in a task. With functional electrical stimulation (FES) for example, the patient's own hand will be used to produce a wide range of forces in otherwise similar movements. To investigate the impact of task changes on BMI performance, we trained two rhesus macaques to control a virtual hand with their physical hand while we added springs to each finger group (index or middle-ring-small) or altered their wrist posture. Using simultaneously recorded intracortical neural activity, finger positions, and electromyography, we found that decoders trained in one context did not generalize well to other contexts, leading to significant increases in prediction error, especially for muscle activations. However, with respect to online BMI control of the virtual hand, changing either the decoder training task context or the hand's physical context during online control had little effect on online performance. We explain this dichotomy by showing that the structure of neural population activity remained similar in new contexts, which could allow for fast adjustment online. Additionally, we found that neural activity shifted trajectories proportional to the required muscle activation in new contexts. This shift in neural activity possibly explains biases to off-context kinematic predictions and suggests a feature that could help predict different magnitude muscle activations while producing similar kinematics.
脑机接口(BMI)在恢复手部运动功能的临床转化中,一个关键因素将是它们对任务变化的稳健性。例如,对于功能性电刺激(FES),患者自己的手将用于在其他类似运动中产生广泛的力。为了研究任务变化对 BMI 性能的影响,我们训练了两只恒河猴用他们的物理手来控制虚拟手,同时在每个手指组(食指或中指-环指-小指)中添加弹簧或改变手腕姿势。我们使用同时记录的皮质内神经活动、手指位置和肌电图发现,在一个上下文环境中训练的解码器不能很好地泛化到其他上下文环境中,导致预测误差显著增加,特别是对于肌肉激活。然而,就虚拟手的在线 BMI 控制而言,在在线控制期间改变解码器训练任务的上下文或手的物理上下文对在线性能几乎没有影响。我们通过表明在新的上下文环境中神经群体活动的结构仍然相似,这可能允许在线快速调整,从而解释了这种二分法。此外,我们发现神经活动在新的上下文环境中按照所需肌肉激活的比例改变轨迹。这种神经活动的转变可能解释了对非上下文运动学预测的偏差,并提出了一个可能有助于预测产生相似运动学但不同肌肉激活程度的特征。